Publication
ECAI 2024
Conference paper

RETRO-LI: Small-Scale Retrieval Augmented Generation Supporting Noisy Similarity Searches and Domain Shift Generalization

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Abstract

The retrieval augmented generation (RAG) system such as Retro has been shown to improve language modeling capabilities and reduce toxicity and hallucinations by retrieving from a database of non-parametric memory containing trillions of entries. We introduce RETRO-LI that shows retrieval can also help at a small scale database but it demands more accurate and better neighbors when searching in such a smaller hence sparser non-parametric memory. This can be met by using a proper semantic similarity search. We further propose adding a regularization to the non-parametric memory for the first time: it significantly reduces perplexity when the neighbor search operations are noisy during inference, and it improves generalization when a domain shift occurs. We also show that the RETRO-LI's non-parametric memory can be potentially implemented on analog in-memory computing hardware, exhibiting $O(1)$ search time while causing noise in retrieving neighbors, with minimal (<1\%) performance loss.